Garbage Segmentation and Attribute Analysis by Robotic Dogs
Efficient waste management and recycling heavily rely on garbage exploration and identification. In this study, we propose GSA2Seg (Garbage Segmentation and Attribute Analysis), a novel visual approach that utilizes quadruped robotic dogs as autonomous agents to address waste management and recyclin...
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Zusammenfassung: | Efficient waste management and recycling heavily rely on garbage exploration
and identification. In this study, we propose GSA2Seg (Garbage Segmentation and
Attribute Analysis), a novel visual approach that utilizes quadruped robotic
dogs as autonomous agents to address waste management and recycling challenges
in diverse indoor and outdoor environments. Equipped with advanced visual
perception system, including visual sensors and instance segmentators, the
robotic dogs adeptly navigate their surroundings, diligently searching for
common garbage items. Inspired by open-vocabulary algorithms, we introduce an
innovative method for object attribute analysis. By combining garbage
segmentation and attribute analysis techniques, the robotic dogs accurately
determine the state of the trash, including its position and placement
properties. This information enhances the robotic arm's grasping capabilities,
facilitating successful garbage retrieval. Additionally, we contribute an image
dataset, named GSA2D, to support evaluation. Through extensive experiments on
GSA2D, this paper provides a comprehensive analysis of GSA2Seg's effectiveness.
Dataset available:
\href{https://www.kaggle.com/datasets/hellob/gsa2d-2024}{https://www.kaggle.com/datasets/hellob/gsa2d-2024}. |
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DOI: | 10.48550/arxiv.2404.18112 |